CLINICAL DATA WAREHOUSE: A REVIEW

Alaa Khalaf Hamoud, A. S. Hashim, Wid Akeel Awadh
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引用次数: 21

Abstract

Clinical decisions are crucial because they are related to human lives. Thus, managers and decision makers inthe clinical environment seek new solutions that can support their decisions. A clinical data warehouse (CDW) is animportant solution that is used to achieve clinical stakeholders’ goals by merging heterogeneous data sources in a centralrepository and using this repository to find answers related to the strategic clinical domain, thereby supporting clinicaldecisions. CDW implementation faces numerous obstacles, starting with the data sources and ending with the tools thatview the clinical information. This paper presents a systematic overview of purpose of CDWs as well as the characteristics;requirements; data sources; extract, transform and load (ETL) process; security and privacy concerns; design approach;architecture; and challenges and difficulties related to implementing a successful CDW. PubMed and Google Scholarare used to find papers related to CDW. Among the total of 784 papers, only 42 are included in the literature review. Thesepapers are classified based on five perspectives, namely methodology, data, system, ETL tool and purpose, to findinsights related to aspects of CDW. This review can contribute answers to questions related to CDW and providerecommendations for implementing a successful CDW.
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临床数据仓库:综述
临床决策至关重要,因为它们关系到人的生命。因此,临床环境中的管理者和决策者寻求新的解决方案来支持他们的决策。临床数据仓库(CDW)是一种重要的解决方案,通过将异构数据源合并到一个中央存储库中,并使用该存储库找到与战略临床领域相关的答案,从而支持临床决策,从而实现临床利益相关者的目标。CDW的实施面临许多障碍,从数据源开始,到查看临床信息的工具结束。本文系统地介绍了化学武器的用途、特点和要求;数据来源;提取、转换和加载(ETL)过程;安全和隐私问题;设计方法;体系结构;以及成功实施《禁止化学武器公约》所面临的挑战和困难。PubMed和谷歌scholar.com用于查找与CDW相关的论文。在784篇论文中,仅有42篇被纳入文献综述。本文从方法论、数据、系统、ETL工具和目的五个方面对论文进行分类,以期发现与CDW相关的方面。这篇综述可以回答与CDW有关的问题,并为成功实施CDW提供建议。
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